Automated analysis of pectoralis major thickness in pec-fly exercises: evolving from manual measurement to deep learning techniques

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Visual Computing for Industry Biomedicine and Art Pub Date : 2024-04-16 DOI:10.1186/s42492-024-00159-6
Shangyu Cai, Yongsheng Lin, Haoxin Chen, Zihao Huang, Yongjin Zhou, Yongping Zheng
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Abstract

This study addresses a limitation of prior research on pectoralis major (PMaj) thickness changes during the pectoralis fly exercise using a wearable ultrasound imaging setup. Although previous studies used manual measurement and subjective evaluation, it is important to acknowledge the subsequent limitations of automating widespread applications. We then employed a deep learning model for image segmentation and automated measurement to solve the problem and study the additional quantitative supplementary information that could be provided. Our results revealed increased PMaj thickness changes in the coronal plane within the probe detection region when real-time ultrasound imaging (RUSI) visual biofeedback was incorporated, regardless of load intensity (50% or 80% of one-repetition maximum). Additionally, participants showed uniform thickness changes in the PMaj in response to enhanced RUSI biofeedback. Notably, the differences in PMaj thickness changes between load intensities were reduced by RUSI biofeedback, suggesting altered muscle activation strategies. We identified the optimal measurement location for the maximal PMaj thickness close to the rib end and emphasized the lightweight applicability of our model for fitness training and muscle assessment. Further studies can refine load intensities, investigate diverse parameters, and employ different network models to enhance accuracy. This study contributes to our understanding of the effects of muscle physiology and exercise training.
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自动分析胸肌练习中的胸大肌厚度:从人工测量到深度学习技术的演变
这项研究利用可穿戴式超声波成像装置,解决了以往研究胸大肌(PMaj)厚度在胸肌飞鸟运动中变化的局限性。尽管之前的研究使用手动测量和主观评价,但必须承认自动化广泛应用的后续局限性。于是,我们采用深度学习模型进行图像分割和自动测量,以解决这一问题,并研究可提供的额外定量补充信息。我们的研究结果表明,当结合实时超声成像(RUSI)视觉生物反馈时,无论负荷强度(50% 或 80% 的单次重复最大值)如何,探头检测区域内冠状面的 PMaj 厚度变化都会增加。此外,参试者的 PMaj 在增强的 RUSI 生物反馈下显示出均匀的厚度变化。值得注意的是,RUSI 生物反馈减少了不同负荷强度下 PMaj 厚度变化的差异,这表明肌肉激活策略发生了改变。我们确定了最大 PMaj 厚度的最佳测量位置,靠近肋骨末端,并强调了我们的模型在健身训练和肌肉评估中的轻量级适用性。进一步的研究可以改进负荷强度,研究不同的参数,并采用不同的网络模型来提高准确性。这项研究有助于我们了解肌肉生理学和运动训练的影响。
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